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A global synthesis of Jatropha cultivation: Insights into land use change and management practices. David Christopher Walmsley, Rob Bailis, and Alexandra-Maria Klein Environ. Sci. Technol., Just Accepted Manuscript • DOI: 10.1021/acs.est.6b01274 • Publication Date (Web): 10 Aug 2016 Downloaded from http://pubs.acs.org on August 16, 2016
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A global synthesis of Jatropha cultivation: Insights into land use change and management
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practices.
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David C. Walmsley1*, Rob Bailis2, Alexandra-Maria Klein3
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1, 21335, Lüneburg, Germany
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Stockholm Environment Institute, 11 Curtis Ave, Somerville MA 02144, USA
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Nature Conservation and Landscape Ecology, University of Freiburg, Tennenbacher Str. 4,
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Institute of Ecology, Faculty of Sustainability, Leuphana University Lüneburg, Scharnhorst Str.
79106 Freiburg, Germany
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*Corresponding author: D. Walmsley, Email:
[email protected], phone: +49 4131 677
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2083, fax: +49 4131 677 2849
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Abstract
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Despite setbacks interest in Jatropha cultivation remains high. This study addressed the question
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to what extent Jatropha cultivation has replaced specific vegetation and land use types and how
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the existing areas are managed. Major forms of land use change and management practices were
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identified based on cluster analysis of data from 106 interviewee’s responses to a comprehensive
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global survey. Of the 1.04 ×106 ha cultivated with Jatropha in 2011 40% were established on land
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that was cleared of vegetation as a result of logging activities unrelated to Jatropha cultivation,
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34% was defined as unused, and the remainder was attributable to areas previously used for crops
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or animal husbandry. With the exception of croplands, these areas were dominated (90-98%) by a
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few internationally active companies whose cultivation models were almost exclusively based on
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outgrower schemes. Management practices were largely extensive in nature (low mechanical
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input and infrequent use of fertilizers, pesticides and herbicides), and also dominated by large
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projects. Broad surveys such as this are useful in identifying general trends in this emerging
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global industry, but detailed case studies, particularly of large projects, are needed in order to
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draw more informed conclusions about the site-specific impacts of Jatropha cultivation.
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Introduction
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Diminishing natural resources and the frequently negative impacts of current resource acquisition
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create the need for more sustainable resource avenues. The use of biomass as a non-food
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commodity, particularly as a substitute for fossil fuel, is therefore being increasingly promoted.1–3
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Many concepts utilizing different sources of organic matter have been suggested4 and are
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receiving increased interest on a commercial scale.5,6 However, increased biofuel production 2 ACS Paragon Plus Environment
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raised concerns about ecological impacts and the extent to which biofuel crops either displaced
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food production or land providing important ecosystem functions.
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With strong associations between common oilseed feedstocks and deforestation, such as soy in
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the Brazilian Amazon7 and oil palm in Indonesia,8 and emerging policies to encourage or
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mandate more sustainable alternatives,9 the biofuel industry sought novel crops. Of the many
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feedstock crops put forward, Jatropha curcas L. (henceforth referred to as Jatropha) has a long
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and mixed history. Originally hailed as a “miracle crop” due to its predicted high oil yield under
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marginal conditions,10–12 Jatropha has often been classified as being an ideal “pro-poor”
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smallholder bioenergy crop.13,14 Consequently, substantial public and private investments in
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Jatropha cultivation schemes have taken place.15,16 However, it has become apparent that the
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requirements necessary to obtain economically viable yields have been seriously underestimated
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and much capital has been withdrawn.14,17–21 Despite this set back, the sustainable production of
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biofuel and other (by)products from Jatropha, albeit under more favorable growing conditions,
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remains a concept receiving considerable political and commercial interest.16,22–25
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As a biofuel crop there has been particular interest in the ecological impact of Jatropha
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cultivation. The actual environmental impact of any cash crop depends on a multitude of factors,
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which are not exclusively associated with cultivation (e.g. transport, processing, co-products and
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consumption). Life cycle analysis is a widely accepted method used to evaluate the impact of a
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given product (e.g. GHG emissions for biofuel) in comparison to an alternative product (e.g.
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conventional fuel). Numerous life cycle analyses have been performed for Jatropha biofuel. In
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many cases, however, land use change (LUC) was not included in the impact assessments.26
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However, other analyses find that LUC can be a major determinant of the net carbon balance in
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any biofuel supply chain.27,28 For policy makers interested in the climate change mitigation 3 ACS Paragon Plus Environment
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potential of alternative fuels, it is essential to understand how specific crops affect land use and
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vegetation cover. Other factors such as site establishment practices, use of chemical inputs, and
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tillage are also important determinants of mitigation potential. While several studies have looked
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at generic cases or empirical examples of actual practices on individual farms, to the best of our
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knowledge, there are no broad analyses addressing the questions to what extent Jatropha
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cultivation has i) replaced specific vegetation and land use types and ii) how the existing areas
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are managed. As a result, the size and nature of cultivation-related impacts on a global scale
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remain unknown.
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In this study we aim to close this knowledge-gap by using data from a recent global survey of
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commercial Jatropha projects to assess the major forms of land use change and management
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practices currently associated with worldwide Jatropha cultivation. We used hierarchical cluster
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analyses to identify groups of projects with similar i) prior vegetation and land use, ii)
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establishment practices and iii) management practices as these are important variables affecting
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the ecological and socio-economic sustainability of biofuel production. Prior vegetation, for
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example, indicates the extent to which direct LUC creates a “carbon debt” that affects the GHG
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benefits of the project. Establishment and management practices also affect the “carbon debt”,
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and other issues such as human and animal health, soil degradation and water pollution.25
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Intensive practices will probably have higher impacts on soil C whilst burning rather than
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utilizing biomass as some type of co-product also affects carbon dynamics as well as that of other
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nutrients.26
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In a second step we calculated the corresponding area associated with the respective LUC,
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establishment and management clusters. In contrast to regional, yet more detailed case studies,
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we are therefore able to provide some insight into sustainability issues associated with land use 4 ACS Paragon Plus Environment
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and management practices of current Jatropha cultivation on a global scale and provide country-
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specific data from the survey in the supporting information for use by others.
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Materials and Methods
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Survey data
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In this study we used empirical data from a global survey conducted in 2011 aimed at projects
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associated with the production of plant oil from woody shrub species in tropical to subtropical
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regions.29 The survey was based on a standardized questionnaire29 consisting of 67, both
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structured and unstructured, questions. We use the term “project” throughout the document to
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refer to Jatropha cultivation activities of a given entity within a single country.
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In order to identify as many projects as possible, a non-probabilistic mixed-method sampling
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approach was applied30,31 based on a combination of desktop research, expert interviews, and a
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producer survey. In total, the global study was based on information gathered in over 180
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interviews with experts and project representatives. Desktop research drew on a wide range of
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sources, including academic publications, reports from civil society and international
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organizations, producer websites, professional online networks as well as industry websites and
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studies. In order to validate the desk research and identify projects that may have been
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overlooked more than 80 semi-structured interviews were conducted with experts, consisting of
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representatives from non-governmental organizations, industry associations, research institutions
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and development organizations.
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This approach yielded a target population of 401 projects. Triangulating desktop research, expert
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and project interviews confirmed a frame population of 260 projects (i.e. those with a chance to 5 ACS Paragon Plus Environment
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be selected due to the applied sampling), with the remaining 141 projects lacking valid contact
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data. In order to avoid bias from sample drawing we applied a simple sampling method32 with all
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projects from the frame population contacted for interviews between May and September 2011.
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The questionnaire was sent out to the interviewees beforehand to give an overview of the survey
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content. The majority of interviews with the 154 respondents (59%) were carried out by means of
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computer-assisted telephone interviewing using an active PDF questionnaire whilst 10%
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performed self-interviewing by sending back the filled-in questionnaire via e-mail. Interviewees
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differed in terms of their professional status within the given project, with the majority (58)
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occupying senior management positions (for a more detailed description see Tab. S1).
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Despite the extensive research efforts combined with a mixed method sampling strategy,
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systematic biases are possible. For example, specific groups of projects might be
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underrepresented, e.g. “in-house projects” where oil-bearing woody shrubs are grown as part of
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other business activities or are mixed with other types of feedstock production and are thus not
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reported separately. In addition, some project owners or managers might prefer to fully develop
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their projects and achieve reliable agronomic and economic results before exposing themselves to
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the market and critical discussions which followed the first Jatropha hype.
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In addition to sampling errors invalid answers and nonresponse must be considered.32 The
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motivation for providing invalid answers can differ, e.g. if a respondent is not allowed to or does
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not want to disclose figures such as acreage and investments or if social desirability leads to
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strategic answers. If answers are expected to be systematically biased in one direction only (e.g.
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exaggeration of social and environmental commitment), interpretations have to be made with
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care. This might have been the case for certain issues addressed in this study, e.g. establishment
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on pristine forest or on previously used (as opposed to unused) land. 6 ACS Paragon Plus Environment
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As the main objective of this study was to assess the land use implications of operational Jatropha
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projects we removed eight projects that did not produce Jatropha as a main crop. In addition, we
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also removed those that were not fully operational at the time, were dedicated primarily to
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research and development, as well as those with an unclear status or incomplete interviews. This
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led to a final dataset of 106 fully operational Jatropha projects (Tab. S2) which were associated
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with 84 parent companies, 33 of which stated that they were active in multiple countries.
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Nonresponse errors affect the survey quality if they are caused by systematic biases, i.e. if the
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nonresponding units or items differ from the sample in specific, systematic ways.33 The projects
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from our final dataset were fairly equally distributed, with 43%, 32% and 31% situated in Africa,
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Asia and Latin America, respectively (Fig. 1). This distribution pattern was very similar to that of
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the complete frame population indicating there was no evidence of unit nonresponse error; at
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least in terms of location, which was the only variable for which such a comparison was possible.
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Due to the fact that our analysis is on a global level (i.e. we do not analyze subsamples of the
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dataset, e.g. continents or different cultivation models) systematic item non-response errors are
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irrelevant.
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The 106 fully operational Jatropha projects included 32 projects that also cultivated additional
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species, albeit to a lesser extent (secondary species in a spatially separate location), as well as 48
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projects that grew Jatropha in combination with other crops (mixed cropping). Fourteen
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additional projects stated that they grew Jatropha in a silvo-pastoral system. Jatropha plants were
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mainly cultivated in rows only (n=63), six projects grew Jatropha purely as field boundary crops
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(hedges) and 21 projects stated that they cultivated Jatropha both in hedges and rows.
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Analyses
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For the questions relevant to our study multiple responses were possible, which made it
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impossible to calculate areas associated with specific answers. We classified projects into
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subgroups by means of cluster analysis to overcome this problem. This is a commonly used
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multivariate data exploration technique, helping to reveal the characteristics of structures or
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patterns present in the data.34 We used R version 3.1.135 to conduct an agglomerative hierarchical
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cluster analysis based on Euclidean distances and Ward’s method (package ‘cluster’, ‘function
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‘agnes’)36 with the intent of minimizing within-group variation and maximizing dissimilarities
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between groups.37 This method uses a bottom-up approach by initially clustering single elements
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(in this case projects) based on the minimum variance criterion and subsequently clusters the
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prior aggregates until one cluster remains. The variables used for cluster analyses were the
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answers provided by interviewees in the check boxes of the relevant questions, with a checked
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box referring to a “yes” and a blank box to a “no”. For means of analyses these answers were
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encoded as a one and a zero, respectively.
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We chose three categories: i) prior vegetation/ prior land use, ii) site establishment and iii) site
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management for individual cluster analyses as these generally have the most impact on
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sustainability issues directly linked to Jatropha cultivation and also because adequate data was
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available. Prior vegetation refers to the type of vegetation prior to establishment of the Jatropha
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plants whilst the term “prior land use” is independent of vegetation type and simply refers to how
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the land was used prior to establishment of the Jatropha plants. In contrast, site establishment and
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management practices both refer to processes directly related to Jatropha cultivation with site
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establishment referring to initial “once off” actions required for establishing the site whilst
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management practices such as fertilization are continuous processes occurring at a rate 8 ACS Paragon Plus Environment
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determined by the field manager or farmer. We would like to note that initial cluster analyses
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with all possible combinations of these categories did not lead to meaningful results, so we
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performed separate cluster analyses for each of the aforementioned categories.
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The relevant questions and response options for the three categories are provided in the
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supporting information (Fig. S1).
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We applied hierarchical cluster analysis as it is commonly used across a wide range of
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disciplines, well understood and readily interpretable.38 The agglomerative coefficient measures
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the clustering structure of the dataset; whereby “a value close to 1 indicates that a clear
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structuring has been found, while a value of 0 indicates that a clear structure is missing and the
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data represents one big cluster”.39 The results of the cluster analyses are presented as
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dendrograms, with “height” on the y-axis indicating the level of similarity with which any two
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clusters were joined.
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As the identification of relevant clusters is subjective, the ability of a specific answer to define a
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given cluster was assessed by means of indicator species analysis,40 using the ‘labdsv’ package
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(function ‘indval’).41 In this analysis an indicator value of a variable is calculated as the product
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of the relative frequency (“fidelity”) and relative abundance (“exclusivity”) of a given variable
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within a cluster. Values range from 0 to 1, with the latter indicating that the variable (in this case
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answer) of interest is a perfect indicator of the cluster (i.e. all projects within the cluster are
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associated with the indicator variable which is exclusive to the cluster). The significance of the
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indicator value was determined using the probability of obtaining as high an indicator value as
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observed over 1000 iterations.41 As the original application of the indicator species analysis and
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its description in the ‘labdsv’ package are associated with species assemblages in ecology40,41 we
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present the formulae for calculating the relative frequencies and abundancies within the ‘labdsv’ 9 ACS Paragon Plus Environment
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package using the terms from our analysis (equation 1 and 2, respectively). For better comparison
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we include the original terms used in the ‘labdsv’ in italics within parenthesis. Note that in
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contrast to the original application for species assemblages the abundance of an answer within a
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project (compared to a species within a sample) can only take on the values zero or one.
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For a cluster c in set K where:
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, presence/absence (1/0) of answer (species) i in project (sample) j
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, abundance of answer “yes” (species) i in project (sample) j
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number of projects (samples) in cluster c
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Equation 1:
relative frequency: , =
∑∈ ,
(∑∈ %, )/ (*+((∑∈( %, )/ ( )
relative abundance: #, = ∑)
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Equation 2:
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With regards to prior vegetation, land use, establishment and management practices we found no
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indication of significant differences between those projects that cultivated Jatropha in boundary
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(hedges) or in mixed cropping systems and those that did not (Chi2 test). Therefore, we did not
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distinguish between such systems in this study.
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As questions allowed for multiple answers we were only able to attribute the corresponding area
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of a project to a given answer (e.g. “degraded land”) when a single answer was provided. In order
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to provide some insight into the extent of area associated with the different land use types and
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management practices at different geopolitical scales we calculated an “area range” by summing
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the minimum and maximum area for each project over countries and continents, which were
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calculated as follows. For those cases in which more than one answer was given, we set the 10 ACS Paragon Plus Environment
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minimum area per answer to 1 ha, assuming this to be a conservative estimate of the average
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minimum size of a cultivated plot. Accordingly, we calculated the maximum area by subtracting
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1 ha from the total area per project. For projects were only one answer was given minimum and
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maximum values were identical. While the actual area lies somewhere within the range provided,
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we considered it important to present these estimates and add the data to the supporting
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information for possible further use by others (figures S3-S5 and tables S4-S8).
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Results
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Prior Vegetation and Land Use
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In total, information from 95 projects on both the prior vegetation and land use type was available
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(90% response rate, Tab. S3). The four main clusters identified were generally characterized by
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their prior land use and to a lesser extent prior vegetation type. Accordingly, the clusters were
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named for the prior land use which was most representative, i.e. “Grazing”, “Crops”, “Unused”,
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and “Logged” (Tab. 1; Fig. 2a). The latter encompassed only nine projects two of which belonged
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to one large parent company active in Asia. In this context, the term “Logged” mainly refers to
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previously logged land with only two projects reporting an actual removal of trees as a direct
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consequence of Jatropha establishment. Therefore, the Logged cluster can best be described as
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small group of projects primarily located on degraded land that was cleared of vegetation as a
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result of logging activities unrelated to Jatropha cultivation.
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“Degraded land” was the most frequent prior vegetation type occurring in 66% of all projects. It
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was not a significant cluster indicator, however, as it was fairly equally distributed across clusters
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with the exception of the Crops cluster where it was less common but nonetheless still occurred
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in 50% of projects. In contrast, the most frequently named prior land use “unused” (34 projects) 11 ACS Paragon Plus Environment
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was a perfect indicator for the identically named cluster. The Unused cluster can therefore best be
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described as large group of projects exclusively located on formerly unused land, often with
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degraded savannah or shrubland (defined as an area where shrubs without a definite crown are
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the dominant vegetation, see Fig. S1) as prior vegetation.
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The prior land use variable husbandry/pasture best characterized the Grazing cluster. The
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remaining projects with husbandry/pasture as a prior land use were found solely within the Crops
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cluster. Unsurprisingly, there were strong positive correlations between food crops, non-food
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crops and farmland (Chi2, p